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Identification of Pathological Disease in Plants using Deep Neural Networks - Powered by Intel® Distribution of OpenVINO™ Toolkit

机译:使用深度神经网络识别植物中的病理疾病-由OpenVINO™Toolkit的英特尔®发行提供支持

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This paper deals with an algorithm for the easy identification or classification of pathological diseases in plant species via a mobile or web application. The entire system is an intelligent framework that enables users to identify a pathological disease via a deep learning and computer vision based smart system – A user merely needs to open the app, click a picture, and view the result. Input for the system can be either an image or live video feed of the plant species, and the result is in the form of a bounding box with the name of the identified pathological disease and the accuracy of the identification. Once the identification is accurately done the user can get more insights into the cause of the disease and how to do a proper medication.For this experimental research purpose, we are targeting five pathological diseases: Blister Blight in Tea, Citrus Canker, Early Blight, Late Blight, Powdery Mildew in Cucurbitaceae. This paper illustrates how the solution is built using deep learning and computer vision algorithms powered by the Intel® Distribution of Open VINO™ toolkit Model Optimizer.
机译:本文介绍了一种通过移动或网络应用程序轻松识别或分类植物病理疾病的算法。整个系统是一个智能框架,使用户能够通过深度学习和基于计算机视觉的智能系统来识别病理疾病–用户仅需打开应用程序,单击图片并查看结果即可。系统的输入可以是植物物种的图像或实时视频输入,并且结果以边框的形式出现,该边框带有所识别的病理疾病的名称和识别的准确性。一旦准确地进行了识别,用户就可以深入了解疾病的原因以及如何使用适当的药物。出于此实验研究的目的,我们的目标是五种病理疾病:茶中的叶枯病,柑橘溃疡病,早期枯萎病,晚疫病,葫芦科白粉病。本文说明了如何使用由英特尔®Open VINO™工具箱模型优化器分发支持的深度学习和计算机视觉算法构建解决方案。

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